Transcript Chapter 7
Chapter 7:
Introduction to SQL
Modern Database Management
7th Edition
Jeffrey A. Hoffer, Mary B. Prescott,
Fred R. McFadden
© 2005 by Prentice Hall
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Objectives
Definition of terms
Discuss advantages of standardized SQL
Define a database using SQL data
definition language
Write single table queries using SQL
Establish referential integrity using SQL
Work with Views
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The Physical Design Stage of SDLC
(Figures 2-4, 2-5 revisited)
Project Identification
and Selection
Project Initiation
and Planning
Analysis
Purpose –programming, testing,
training, installation, documenting
Deliverable – operational
programs, documentation, training
materials, program/data structures
Logical Design
Physical
Physical Design
Design
Database activity –
physical database design and
database implementation
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Implementation
Implementation
Maintenance
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SQL Overview
Structured Query Language
The standard for relational database
management systems (RDBMS)
SQL-92 and SQL-99 Standards – Purpose:
Specify syntax/semantics for data definition and
manipulation
Define data structures
Enable portability
Specify minimal (level 1) and complete (level 2)
standards
Allow for later growth/enhancement to standard
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Benefits of a Standardized
Relational Language
Reduced training costs
Productivity
Application portability
Application longevity
Reduced dependence on a single vendor
Cross-system communication
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Catalog
Commands that define a database, including creating,
altering, and dropping tables and establishing constraints
Data Manipulation Language (DML)
The structure that contains descriptions of objects created
by a user (base tables, views, constraints)
Data Definition Language (DDL)
A set of schemas that constitute the description of a
database
Schema
SQL Environment
Commands that maintain and query a database
Data Control Language (DCL)
Commands that control a database, including
administering privileges and committing data
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Figure 7-1:
A simplified schematic of a typical SQL environment, as
described by the SQL-92 standard
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Some SQL Data types
(from Oracle 9i)
String types
Numeric types
CHAR(n) – fixed-length character data, n characters long
Maximum length = 2000 bytes
VARCHAR2(n) – variable length character data, maximum
4000 bytes
LONG – variable-length character data, up to 4GB. Maximum
1 per table
NUMBER(p,q) – general purpose numeric data type
INTEGER(p) – signed integer, p digits wide
FLOAT(p) – floating point in scientific notation with p binary
digits precision
Date/time type
DATE – fixed-length date/time in dd-mm-yy form
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Figure 7-4:
DDL, DML, DCL, and the database development process
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SQL Database Definition
Data Definition Language (DDL)
Major CREATE statements:
CREATE SCHEMA – defines a portion of the
database owned by a particular user
CREATE TABLE – defines a table and its columns
CREATE VIEW – defines a logical table from one
or more views
Other CREATE statements: CHARACTER SET,
COLLATION, TRANSLATION, ASSERTION,
DOMAIN
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Table Creation
Figure 7-5: General syntax for CREATE TABLE
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Steps in table creation:
1.
Identify data types for
attributes
2.
Identify columns that can
and cannot be null
3.
Identify columns that must
be unique (candidate keys)
4.
Identify primary keyforeign key mates
5.
Determine default values
6.
Identify constraints on
columns (domain
specifications)
7.
Create the table and
associated indexes
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The following slides create tables for
this enterprise data model
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Figure 7-6: SQL database definition commands for Pine Valley Furniture
Overall table
definitions
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Defining attributes and their data types
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Non-nullable specification
Identifying primary key
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Primary keys
can never have
NULL values
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Non-nullable specifications
Primary key
Some primary keys are composite –
composed of multiple attributes
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Controlling the values in attributes
Default value
Domain constraint
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Identifying foreign keys and establishing relationships
Primary key of
parent table
Foreign key of
dependent table
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Data Integrity Controls
Referential integrity – constraint that
ensures that foreign key values of a
table must match primary key values of
a related table in 1:M relationships
Restricting:
Deletes of primary records
Updates of primary records
Inserts of dependent records
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Relational
integrity is
enforced via
the primarykey to foreignkey match
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Changing and Removing Tables
ALTER TABLE statement allows you to
change column specifications:
ALTER TABLE CUSTOMER_T ADD (TYPE
VARCHAR(2))
DROP TABLE statement allows you to
remove tables from your schema:
DROP TABLE CUSTOMER_T
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Schema Definition
Control processing/storage efficiency:
Choice of indexes
File organizations for base tables
File organizations for indexes
Data clustering
Statistics maintenance
Creating indexes
Speed up random/sequential access to base table
data
Example
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CREATE INDEX NAME_IDX ON
CUSTOMER_T(CUSTOMER_NAME)
This makes an index for the CUSTOMER_NAME field of
the CUSTOMER_T table
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Insert Statement
Adds data to a table
Inserting into a table
Inserting a record that has some null attributes
requires identifying the fields that actually get data
INSERT INTO CUSTOMER_T VALUES (001, ‘Contemporary
Casuals’, 1355 S. Himes Blvd.’, ‘Gainesville’, ‘FL’, 32601);
INSERT INTO PRODUCT_T (PRODUCT_ID,
PRODUCT_DESCRIPTION,PRODUCT_FINISH, STANDARD_PRICE,
PRODUCT_ON_HAND) VALUES (1, ‘End Table’, ‘Cherry’, 175, 8);
Inserting from another table
INSERT INTO CA_CUSTOMER_T SELECT * FROM CUSTOMER_T WHERE
STATE = ‘CA’;
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Delete Statement
Removes rows from a table
Delete certain rows
DELETE FROM CUSTOMER_T WHERE STATE
= ‘HI’;
Delete all rows
DELETE FROM CUSTOMER_T;
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Update Statement
Modifies data in existing rows
UPDATE PRODUCT_T SET UNIT_PRICE = 775
WHERE PRODUCT_ID = 7;
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SELECT Statement
Used for queries on single or multiple tables
Clauses of the SELECT statement:
SELECT
FROM
Indicate categorization of results
HAVING
Indicate the conditions under which a row will be included in the result
GROUP BY
Indicate the table(s) or view(s) from which data will be obtained
WHERE
List the columns (and expressions) that should be returned from the
query
Indicate the conditions under which a category (group) will be included
ORDER BY
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Sorts the result according to specified criteria
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Figure 7-8: SQL
statement
processing order
(adapted from
van der Lans,
p.100)
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SELECT Example
Find products with standard price less than
$275
SELECT PRODUCT_NAME, STANDARD_PRICE
FROM PRODUCT_V
WHERE STANDARD_PRICE < 275;
Table 7-3: Comparison Operators in SQL
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SELECT Example using Alias
Alias is an alternative column or table name
SELECT CUST.CUSTOMER AS NAME,
CUST.CUSTOMER_ADDRESS
FROM CUSTOMER_V CUST
WHERE NAME = ‘Home Furnishings’;
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SELECT Example
Using a Function
Using the COUNT aggregate function to
find totals
SELECT COUNT(*) FROM ORDER_LINE_V
WHERE ORDER_ID = 1004;
Note: with aggregate functions you can’t have
single-valued columns included in the SELECT
clause
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SELECT Example – Boolean Operators
AND, OR, and NOT Operators for customizing
conditions in WHERE clause
SELECT PRODUCT_DESCRIPTION, PRODUCT_FINISH,
STANDARD_PRICE
FROM PRODUCT_V
WHERE (PRODUCT_DESCRIPTION LIKE ‘%Desk’
OR PRODUCT_DESCRIPTION LIKE ‘%Table’)
AND UNIT_PRICE > 300;
Note: the LIKE operator allows you to compare strings using wildcards. For
example, the % wildcard in ‘%Desk’ indicates that all strings that have any
number of characters preceding the word “Desk” will be allowed
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SELECT Example –
Sorting Results with the ORDER BY Clause
Sort the results first by STATE, and within a
state by CUSTOMER_NAME
SELECT CUSTOMER_NAME, CITY, STATE
FROM CUSTOMER_V
WHERE STATE IN (‘FL’, ‘TX’, ‘CA’, ‘HI’)
ORDER BY STATE, CUSTOMER_NAME;
Note: the IN operator in this example allows you to include rows whose
STATE value is either FL, TX, CA, or HI. It is more efficient than separate
OR conditions
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SELECT Example –
Categorizing Results Using the GROUP BY Clause
For use with aggregate functions
Scalar aggregate: single value returned from SQL query with
aggregate function
Vector aggregate: multiple values returned from SQL query
with aggregate function (via GROUP BY)
SELECT STATE, COUNT(STATE)
FROM CUSTOMER_V
GROUP BY STATE;
Note: you can use single-value fields with aggregate
functions if they are included in the GROUP BY clause
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SELECT Example –
Qualifying Results by Categories
Using the HAVING Clause
For use with GROUP BY
SELECT STATE, COUNT(STATE)
FROM CUSTOMER_V
GROUP BY STATE
HAVING COUNT(STATE) > 1;
Like a WHERE clause, but it operates on groups (categories),
not on individual rows. Here, only those groups with total
numbers greater than 1 will be included in final result
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Figure 7-8: SQL
statement
processing order
(adapted from
van der Lans,
p.100)
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Using and Defining Views
Views provide users controlled access to tables
Base Table – table containing the raw data
Dynamic View
A “virtual table” created dynamically upon request by a user
No data actually stored; instead data from base table made
available to user
Based on SQL SELECT statement on base tables or other
views
Materialized View
Copy or replication of data
Data actually stored
Must be refreshed periodically to match the corresponding
base tables
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Sample CREATE VIEW
CREATE VIEW EXPENSIVE_STUFF_V AS
SELECT PRODUCT_ID, PRODUCT_NAME, UNIT_PRICE
FROM PRODUCT_T
WHERE UNIT_PRICE >300
WITH CHECK_OPTION;
View has a name
View is based on a SELECT statement
CHECK_OPTION works only for
updateable views and prevents updates that
would create rows not included in the view
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Advantages of Views
Simplify query commands
Assist with data security (but don't rely on views
for security, there are more important security
measures)
Enhance programming productivity
Contain most current base table data
Use little storage space
Provide customized view for user
Establish physical data independence
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Disadvantages of Views
Use processing time each time view is
referenced
May or may not be directly updateable
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